La simulation relaxée de graphes pour la recherche de motifs
Abstract
Graph pattern matching has been widely used in large spectrum of real applications. In
this context, different models along with their appropriate algorithms have been proposed.
However, a major drawback on existing models is their limitation to find meaningful matches
resulting in a number of failing queries. In this paper we introduce a new model for graph
pattern matching allowing the relaxation of queries in order to avoid the empty-answer problem.
Then we develop an efficient algorithm based on optimization strategies for computing
the top-k matches according to our model. Our experimental evaluation on four real datasets
demonstrates both the effectiveness and the efficiency of our approach.